Equality of Learning Opportunity via Individual Fairness in Personalized Recommendations
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Published:2021-10-08
Issue:
Volume:
Page:
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ISSN:1560-4292
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Container-title:International Journal of Artificial Intelligence in Education
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language:en
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Short-container-title:Int J Artif Intell Educ
Author:
Marras MirkoORCID, Boratto LudovicoORCID, Ramos GuilhermeORCID, Fenu GianniORCID
Abstract
AbstractOnline education platforms play an increasingly important role in mediating the success of individuals’ careers. Therefore, while building overlying content recommendation services, it becomes essential to guarantee that learners are provided with equal recommended learning opportunities, according to the platform principles, context, and pedagogy. Though the importance of ensuring equality of learning opportunities has been well investigated in traditional institutions, how this equality can be operationalized in online learning ecosystems through recommender systems is still under-explored. In this paper, we shape a blueprint of the decisions and processes to be considered in the context of equality of recommended learning opportunities, based on principles that need to be empirically-validated (no evaluation with live learners has been performed). To this end, we first provide a formalization of educational principles that model recommendations’ learning properties, and a novel fairness metric that combines them to monitor the equality of recommended learning opportunities among learners. Then, we envision a scenario wherein an educational platform should be arranged in such a way that the generated recommendations meet each principle to a certain degree for all learners, constrained to their individual preferences. Under this view, we explore the learning opportunities provided by recommender systems in a course platform, uncovering systematic inequalities. To reduce this effect, we propose a novel post-processing approach that balances personalization and equality of recommended opportunities. Experiments show that our approach leads to higher equality, with a negligible loss in personalization. This paper provides a theoretical foundation for future studies of learners’ preferences and limits concerning the equality of recommended learning opportunities.
Funder
Agència per a la Competitividad de la Empresa, ACCIO Sardinian Regional Government EPFL Lausanne
Publisher
Springer Science and Business Media LLC
Subject
Computational Theory and Mathematics,Education
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